Yang Ping, Dumont Guy, Ansermino J Mark
Department of Electrical and Computer Engineering, the University of British Columbia, Vancouver, BC V6T 1Z4, Canada.
IEEE Trans Biomed Eng. 2006 Nov;53(11):2211-9. doi: 10.1109/TBME.2006.877107.
The proposed algorithm is designed to detect changes in the heart rate trend signal which fits the dynamic linear model description. Based on this model, the interpatient and intraoperative variations are handled by estimating the noise covariances via an adaptive Kalman filter. An exponentially weighted moving average predictor switches between two different forgetting coefficients to allow the historical data to have a varying influence in prediction. The cumulative sum testing of the residuals identifies the change points online. The algorithm was tested on a substantial volume of real clinical data. Comparison of the proposed algorithm with Trigg's approach revealed that the algorithm performs more favorably with a shorter delay. The receiver operating characteristic curve analysis indicates that the algorithm outperformed the change detection by clinicians in real time.
所提出的算法旨在检测符合动态线性模型描述的心率趋势信号中的变化。基于该模型,通过自适应卡尔曼滤波器估计噪声协方差来处理患者间和术中的变化。指数加权移动平均预测器在两个不同的遗忘系数之间切换,以使历史数据在预测中具有不同的影响。残差的累积和检验可在线识别变化点。该算法在大量真实临床数据上进行了测试。将所提出的算法与Trigg方法进行比较表明,该算法在延迟更短的情况下表现更优。接收器操作特性曲线分析表明,该算法在实时性方面优于临床医生的变化检测。